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WaveFormer: A 3D Transformer with Wavelet-Driven Feature Representation for Efficient Medical Image Segmentation

31 March 2025
Md. Mahfuz Al Hasan
Mahdi Zaman
Abdul Jawad
A. Santamaría-Pang
Ho Hin Lee
I. Tarapov
Kyle See
Md Shah Imran
Antika Roy
Y. P. Fallah
Navid Asadizanjani
Reza Forghani
    MedIm
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Abstract

Transformer-based architectures have advanced medical image analysis by effectively modeling long-range dependencies, yet they often struggle in 3D settings due to substantial memory overhead and insufficient capture of fine-grained local features. We address these limitations with WaveFormer, a novel 3D-transformer that: i) leverages the fundamental frequency-domain properties of features for contextual representation, and ii) is inspired by the top-down mechanism of the human visual recognition system, making it a biologically motivated architecture. By employing discrete wavelet transformations (DWT) at multiple scales, WaveFormer preserves both global context and high-frequency details while replacing heavy upsampling layers with efficient wavelet-based summarization and reconstruction. This significantly reduces the number of parameters, which is critical for real-world deployment where computational resources and training times are constrained. Furthermore, the model is generic and easily adaptable to diverse applications. Evaluations on BraTS2023, FLARE2021, and KiTS2023 demonstrate performance on par with state-of-the-art methods while offering substantially lower computational complexity.

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@article{hasan2025_2503.23764,
  title={ WaveFormer: A 3D Transformer with Wavelet-Driven Feature Representation for Efficient Medical Image Segmentation },
  author={ Md Mahfuz Al Hasan and Mahdi Zaman and Abdul Jawad and Alberto Santamaria-Pang and Ho Hin Lee and Ivan Tarapov and Kyle See and Md Shah Imran and Antika Roy and Yaser Pourmohammadi Fallah and Navid Asadizanjani and Reza Forghani },
  journal={arXiv preprint arXiv:2503.23764},
  year={ 2025 }
}
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